9ca31e45e0
- Fix circular dependencies in agent/tools - Migrate from custom JSON to OpenAI tool calls format - Add async streaming (step_stream, complete_stream) - Simplify prompt system and remove token counting - Add 5 new API endpoints (/health, /v1/models, /api/memory/*) - Add 3 new tools (get_torrent_by_index, add_torrent_by_index, set_language) - Fix all 500 tests and add coverage config (80% threshold) - Add comprehensive docs (README, pytest guide) BREAKING: LLM interface changed, memory injection via get_memory()
279 lines
8.8 KiB
Python
279 lines
8.8 KiB
Python
"""Main agent for media library management."""
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import json
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import logging
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from typing import Any, Protocol
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from infrastructure.persistence import get_memory
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from .config import settings
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from .prompts import PromptBuilder
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from .registry import Tool, make_tools
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logger = logging.getLogger(__name__)
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class LLMClient(Protocol):
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"""Protocol defining the LLM client interface."""
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def complete(self, messages: list[dict[str, Any]]) -> str:
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"""Send messages to the LLM and get a response."""
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...
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class Agent:
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"""
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AI agent for media library management.
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Orchestrates interactions between the LLM, memory, and tools
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to respond to user requests.
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Attributes:
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llm: LLM client (DeepSeek or Ollama).
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tools: Available tools for the agent.
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prompt_builder: Builds system prompts with context.
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max_tool_iterations: Maximum tool calls per request.
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"""
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def __init__(self, llm: LLMClient, max_tool_iterations: int = 5):
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"""
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Initialize the agent.
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Args:
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llm: LLM client compatible with the LLMClient protocol.
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max_tool_iterations: Maximum tool iterations (default: 5).
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"""
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self.llm = llm
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self.tools: dict[str, Tool] = make_tools()
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self.prompt_builder = PromptBuilder(self.tools)
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self.max_tool_iterations = max_tool_iterations
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def _parse_intent(self, text: str) -> dict[str, Any] | None:
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"""
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Parse an LLM response to detect a tool call.
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Args:
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text: LLM response text.
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Returns:
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Dict with intent if a tool call is detected, None otherwise.
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"""
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text = text.strip()
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# Try direct JSON parse
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if text.startswith("{") and text.endswith("}"):
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try:
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data = json.loads(text)
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if self._is_valid_intent(data):
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return data
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except json.JSONDecodeError:
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pass
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# Try to extract JSON from text
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try:
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start = text.find("{")
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end = text.rfind("}") + 1
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if start != -1 and end > start:
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json_str = text[start:end]
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data = json.loads(json_str)
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if self._is_valid_intent(data):
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return data
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except json.JSONDecodeError:
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pass
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return None
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def _is_valid_intent(self, data: Any) -> bool:
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"""Check if parsed data is a valid tool intent."""
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if not isinstance(data, dict) or "action" not in data:
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return False
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action = data.get("action")
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return isinstance(action, dict) and isinstance(action.get("name"), str)
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def _execute_action(self, intent: dict[str, Any]) -> dict[str, Any]:
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"""
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Execute a tool action requested by the LLM.
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Args:
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intent: Dict containing the action to execute.
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Returns:
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Tool execution result.
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"""
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action = intent["action"]
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name: str = action["name"]
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args: dict[str, Any] = action.get("args", {}) or {}
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tool = self.tools.get(name)
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if not tool:
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logger.warning(f"Unknown tool requested: {name}")
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return {
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"error": "unknown_tool",
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"tool": name,
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"available_tools": list(self.tools.keys()),
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}
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try:
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result = tool.func(**args)
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# Track errors in episodic memory
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if result.get("status") == "error" or result.get("error"):
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memory = get_memory()
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memory.episodic.add_error(
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action=name,
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error=result.get("error", result.get("message", "Unknown error")),
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context={"args": args, "result": result},
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)
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return result
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except TypeError as e:
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error_msg = f"Bad arguments for {name}: {e}"
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logger.error(error_msg)
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memory = get_memory()
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memory.episodic.add_error(
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action=name, error=error_msg, context={"args": args}
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)
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return {"error": "bad_args", "message": str(e)}
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except Exception as e:
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error_msg = f"Error executing {name}: {e}"
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logger.error(error_msg, exc_info=True)
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memory = get_memory()
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memory.episodic.add_error(action=name, error=str(e), context={"args": args})
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return {"error": "execution_error", "message": str(e)}
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def _check_unread_events(self) -> str:
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"""
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Check for unread background events and format them.
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Returns:
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Formatted string of events, or empty string if none.
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"""
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memory = get_memory()
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events = memory.episodic.get_unread_events()
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if not events:
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return ""
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lines = ["Recent events:"]
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for event in events:
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event_type = event.get("type", "unknown")
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data = event.get("data", {})
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if event_type == "download_complete":
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lines.append(f" - Download completed: {data.get('name')}")
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elif event_type == "new_files_detected":
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lines.append(f" - {data.get('count')} new files detected")
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else:
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lines.append(f" - {event_type}: {data}")
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return "\n".join(lines)
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def step(self, user_input: str) -> str:
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"""
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Execute one agent step with iterative tool execution.
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Process:
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1. Check for unread events
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2. Build system prompt with memory context
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3. Query the LLM
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4. If tool call detected, execute and loop
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5. Return final text response
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Args:
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user_input: User message.
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Returns:
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Final response in natural text.
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"""
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logger.info("Starting agent step")
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logger.debug(f"User input: {user_input}")
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memory = get_memory()
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# Check for background events
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events_notification = self._check_unread_events()
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if events_notification:
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logger.info("Found unread background events")
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# Build system prompt
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system_prompt = self.prompt_builder.build_system_prompt()
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# Initialize conversation
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messages: list[dict[str, Any]] = [
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{"role": "system", "content": system_prompt},
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]
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# Add conversation history
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history = memory.stm.get_recent_history(settings.max_history_messages)
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if history:
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for msg in history:
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messages.append({"role": msg["role"], "content": msg["content"]})
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logger.debug(f"Added {len(history)} messages from history")
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# Add events notification
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if events_notification:
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messages.append(
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{"role": "system", "content": f"[NOTIFICATION]\n{events_notification}"}
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)
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# Add user input
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messages.append({"role": "user", "content": user_input})
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# Tool execution loop
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iteration = 0
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while iteration < self.max_tool_iterations:
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logger.debug(f"Iteration {iteration + 1}/{self.max_tool_iterations}")
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llm_response = self.llm.complete(messages)
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logger.debug(f"LLM response: {llm_response[:200]}...")
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intent = self._parse_intent(llm_response)
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if not intent:
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# Final text response
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logger.info("No tool intent, returning response")
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memory.stm.add_message("user", user_input)
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memory.stm.add_message("assistant", llm_response)
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memory.save()
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return llm_response
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# Execute tool
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tool_name = intent.get("action", {}).get("name", "unknown")
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logger.info(f"Executing tool: {tool_name}")
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tool_result = self._execute_action(intent)
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logger.debug(f"Tool result: {tool_result}")
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# Add to conversation
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messages.append(
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{"role": "assistant", "content": json.dumps(intent, ensure_ascii=False)}
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)
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messages.append(
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{
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"role": "user",
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"content": json.dumps(
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{"tool_result": tool_result}, ensure_ascii=False
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),
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}
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)
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iteration += 1
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# Max iterations reached
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logger.warning(f"Max iterations ({self.max_tool_iterations}) reached")
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messages.append(
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{
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"role": "user",
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"content": "Please provide a final response based on the results.",
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}
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)
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final_response = self.llm.complete(messages)
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memory.stm.add_message("user", user_input)
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memory.stm.add_message("assistant", final_response)
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memory.save()
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return final_response
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